2020
DOI: 10.17485/ijst/v13i32.541
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Real time satellite image based CCF approximation model for efficient sugarcane growth and yield estimation using artificial neural networks

Abstract: Objective: To improve the performance of an efficient satellite image based CCF (Color, Climate, Flow) approximation model is presented in this article. Method: We attempted for plant growth estimation and yield estimation using artificial neural networks. The model receives the satellite images and preprocesses to improve the quality of the image. From the quality improved image, the method extracts the color values. Further, the features like climate and flow features from the data set of the region have bee… Show more

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